因果推理
推论
机器学习
反事实思维
人工智能
计算机科学
透视图(图形)
基准推理
贝叶斯推理
计量经济学
频数推理
心理学
贝叶斯概率
数学
社会心理学
作者
Tony Blakely,John Lynch,Koen Simons,Rebecca Bentley,Sherri Rose
摘要
Causal inference requires theory and prior knowledge to structure analyses, and is not usually thought of as an arena for the application of prediction modelling. However, contemporary causal inference methods, premised on counterfactual or potential outcomes approaches, often include processing steps before the final estimation step. The purposes of this paper are: (i) to overview the recent emergence of prediction underpinning steps in contemporary causal inference methods as a useful perspective on contemporary causal inference methods, and (ii) explore the role of machine learning (as one approach to 'best prediction') in causal inference. Causal inference methods covered include propensity scores, inverse probability of treatment weights (IPTWs), G computation and targeted maximum likelihood estimation (TMLE). Machine learning has been used more for propensity scores and TMLE, and there is potential for increased use in G computation and estimation of IPTWs.
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